A Deep Learning-Based Automatic Collateral Assessment in Patients with Acute Ischemic Stroke.
Yoon-Chul KimJong-Won ChungOh Young BangMihee HongWoo-Keun SeoGyeong-Moon KimEung Yeop KimJin Soo LeeJi Man HongDavid S LiebeskindJeffrey L SaverPublished in: Translational stroke research (2022)
This study aimed to develop a supervised deep learning (DL) model for grading collateral status from dynamic susceptibility contrast magnetic resonance perfusion (DSC-MRP) images from patients with large vessel occlusion (LVO) acute ischemic stroke (AIS) and compare its performance against experts' manual grading. Among consecutive LVO-AIS at three medical center sites, DSC-MRP data were processed to generate collateral flow maps consisting of arterial, capillary, and venous phases. With the use of expert readings as a reference, a DL model was developed to analyze collateral status with output classified into good and poor grades. The resulting model was externally validated in a later-collected population from one medical center site. The model was trained on 255 patients and externally validated on 72 patients. In the all-site internal validation population, DL grading of good collateral probability yielded a c statistic of 0.91; in the external validation population, the c statistic was 0.85. In the external validation population, there was moderate agreement between the experts' grades and DL grades (kappa = 0.53, 95% CI = 0.32-0.73, p < 0.0001). Day 7 infarct growth volume was higher in DL-graded poor collateral group than good collateral group patients (median volume [26 mL vs. 6 mL], p = 0.01) in patients with successful reperfusion (modified treatment in cerebral infarction (mTICI) = 2b-3). In all patients with a 90-day modified Rankin Scale (mRS) score, there was a shift to more favorable outcomes in the good collateral group, with a common odds ratio of 2.99 (95% CI = 1.89-4.76, p < 0.0001). The DL-based collateral grading was in good agreement with expert manual grading in both development and validation populations. After exclusion of patients with large infarct volume, early reperfusion is more likely to benefit patients with the poor collateral flow, and the DL method has the potential to aid the assessment of collateral status.
Keyphrases
- acute ischemic stroke
- deep learning
- end stage renal disease
- magnetic resonance
- ejection fraction
- chronic kidney disease
- acute myocardial infarction
- peritoneal dialysis
- machine learning
- prognostic factors
- magnetic resonance imaging
- inflammatory response
- toll like receptor
- acute coronary syndrome
- nuclear factor
- skeletal muscle
- immune response
- blood brain barrier
- resistance training
- coronary artery disease
- body composition
- electronic health record
- combination therapy